This paper proposes a scalable channel estimation and reflection optimization framework for reconfigurable intelligent surface (RIS)-enhanced orthogonal frequency division multiplexing (OFDM) systems. Specifically, the proposed scheme firstly generates a training set of RIS reflection coefficient vectors offline. For each RIS reflection coefficient vector in the training set, the proposed scheme estimates only the end-to-end composite channel and then performs the transmit power allocation. As a result, the RIS reflection optimization is simplified by searching for the optimal reflection coefficient vector maximizing the achievable rate from the pre-designed training set. The proposed scheme is capable of flexibly adjusting the training overhead according to the given channel coherence time, which is in sharp contrast to the conventional counterparts. Moreover, we discuss the computational complexity of the proposed scheme and analyze the theoretical scaling law of the achievable rate versus the number of training slots. Finally, simulation results demonstrate that the proposed scheme is superior to existing approaches in terms of decreasing training overhead, reducing complexity as well as improving rate performance in the presence of channel estimation errors.
翻译:本文建议为重新配置智能表面(RIS)增强正方位频率分解(OFDM)系统提供一个可扩缩的频道估计和反射优化框架。具体地说,拟议办法首先产生一套离线的RIS反射系数矢量培训。对于每套培训中的每个RIS反射系数矢量,拟议办法只估计端对端复合信道,然后进行传输能力分配。因此,通过寻找最佳反射系数矢量,最大限度地实现预先设计的培训套件的可实现率,使RIS反射优化简化。拟议办法能够根据特定频道一致性时间灵活调整培训间接费用,这与传统的对应时间截然相反。此外,我们讨论了拟议办法的计算复杂性,分析了可实现率相对于培训槽数的理论扩展法。最后,模拟结果表明,拟议的办法在减少培训间接费用、降低复杂性以及提高频道估计误差率方面优于现行办法。